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Computer-aided gleason grading of prostate cancer histopathological images using texton forests

机译:使用Texton森林对前列腺癌组织病理学图像进行计算机辅助格里森分级

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The Gleason score is the single most important prognostic indicator for prostate cancer candidates and plays a significant role in treatment planning. Histopathological imaging of prostate tissue samples provides the gold standard for obtaining the Gleason score, but the manual assignment of Gleason grades is a labor-intensive and error-prone process. We have developed a texture classification system for automatic and reproducible Gleason grading. Our system characterizes the texture in images belonging to a tumor grade by clustering extracted filter responses at each pixel into textons (basic texture elements). We have used random forests to cluster the filter responses into textons followed by the spatial pyramid match kernel in conjunction with an SVM classifier. We have demonstrated the efficacy of our system in distinguishing between Gleason grades 3 and 4.
机译:格里森评分是前列腺癌候选者最重要的预后指标,在治疗计划中起着重要作用。前列腺组织样品的组织病理学成像为获得Gleason评分提供了金标准,但是手动分配Gleason等级是一项劳动强度大且容易出错的过程。我们已经开发了一种纹理分类系统,用于自动和可重复的格里森分级。我们的系统通过将每个像素处提取的滤镜响应聚类为纹理(基本纹理元素)来表征属于肿瘤等级的图像中的纹理。我们使用随机森林将过滤器响应聚类为文本,然后将空间金字塔匹配内核与SVM分类器结合在一起。我们已经证明了我们的系统在区分格里森3级和4级方面的功效。

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